Empirical models are important tools for relating field-measured biophysical variables to remote sensing data. Regression analysis has been a popular empirical method of linking these two types of data to provide continuous estimates for variables such as biomass, percent woody canopy cover, and leaf area index (LAI). Traditional methods of regression are not sufficient when resulting biophysical surfaces derived from remote sensing are subsequently used to drive ecosystem process models. Most regression analyses in remote sensing rely on a single spectral vegetation index (SVI) based on red and near-infrared reflectance from a single date of imagery. There are compelling reasons for utilizing greater spectral dimensionality, and for includ...
Monitoring the composition of regeneration stands is an important goal of forest management in Main...
Application of two regression-based methods to estimate the effects of partial harvest on forest str...
It is still a major challenge to select appropriate variables from remote sensing sensors, which imp...
Spectral invariants provide a novel approach for characterizing canopy structure in forest reflectan...
The leaf area index (LAI) of plant canopies is an important structural variable for assessing terres...
Research Doctorate - Doctor of Philosophy (PhD)Due to the effects of global warming and climate chan...
Graduation date: 2002This study aims to compare different methods of obtaining maximum growing seaso...
The Landsat multispectral time series is a valuable source of moderate spatial resolution data to su...
Advanced forest resource inventory (FRI) information is of critical importance for sustainable fores...
Leaf area index (LAI) is an important indicator of productivity within reclamation programs. It is t...
PubMedID: 25604062Percent tree cover is the percentage of the ground surface area covered by a verti...
The Leaf Area Index (LAI) is an important indicator of vegetation development which can be used as a...
The Leaf Area Index (LAI) is an important indicator of vegetation development which can be used as a...
Empirical models are important tools for relating field-measured biophysical variables to remotely s...
AbstractEstimation of forest attributes using remotely sensed data has being as a new potential for ...
Monitoring the composition of regeneration stands is an important goal of forest management in Main...
Application of two regression-based methods to estimate the effects of partial harvest on forest str...
It is still a major challenge to select appropriate variables from remote sensing sensors, which imp...
Spectral invariants provide a novel approach for characterizing canopy structure in forest reflectan...
The leaf area index (LAI) of plant canopies is an important structural variable for assessing terres...
Research Doctorate - Doctor of Philosophy (PhD)Due to the effects of global warming and climate chan...
Graduation date: 2002This study aims to compare different methods of obtaining maximum growing seaso...
The Landsat multispectral time series is a valuable source of moderate spatial resolution data to su...
Advanced forest resource inventory (FRI) information is of critical importance for sustainable fores...
Leaf area index (LAI) is an important indicator of productivity within reclamation programs. It is t...
PubMedID: 25604062Percent tree cover is the percentage of the ground surface area covered by a verti...
The Leaf Area Index (LAI) is an important indicator of vegetation development which can be used as a...
The Leaf Area Index (LAI) is an important indicator of vegetation development which can be used as a...
Empirical models are important tools for relating field-measured biophysical variables to remotely s...
AbstractEstimation of forest attributes using remotely sensed data has being as a new potential for ...
Monitoring the composition of regeneration stands is an important goal of forest management in Main...
Application of two regression-based methods to estimate the effects of partial harvest on forest str...
It is still a major challenge to select appropriate variables from remote sensing sensors, which imp...